In the field of neighborhood rough set, attribute reduction is considered as a key topic. Neighborhood relation and rough approximation play crucial roles in the process of obtaining the reduct. Presently, many strategies have been proposed to accelerate such process from the viewpoint of samples. However, these methods speed up the process of obtaining the reduct only from binary relation or rough approximation, and then the obtained results in time consumption may not be fully improved. To fill such a gap, a combined acceleration strategy based on compressing the scanning space of both neighborhood and lower approximation is proposed, which aims to further reduce the time consumption of obtaining the reduct. In addition, 15 UCI data sets ...
In recent years, the theory of decision-theoretic rough set and its applications have been studied, ...
Attribute selection (Feature Selection) is a significant technique for data preprocessing and dimens...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
By introducing a novel attribute reduction algorithm based on an extension neighborhood relation, it...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
As one of the key topics in the development of neighborhood rough set, attribute reduction has attra...
Parallel attribute reduction is one of the most important topics in current research on rough set th...
In rough set theory, attribute reduction aims to retain the discernability of the original attribute...
The attribute reduction problem for rough set is analyzed by the mutual information of attribute set...
Neighborhood Rough Sets (NRS) has been proven to be an efficient tool for heterogeneous attribute re...
[[abstract]]For data mining or machine learning, the plethora of parameters that may affect the effi...
Attribute reduction with rough sets is an effective technique for obtaining a compact and informativ...
Due to the explosive growth of data collected by various sensors, it has become a difficult problem ...
Due to increase in large number of document on the internet data mining becomes an important key par...
In recent years, the theory of decision-theoretic rough set and its applications have been studied, ...
Attribute selection (Feature Selection) is a significant technique for data preprocessing and dimens...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
By introducing a novel attribute reduction algorithm based on an extension neighborhood relation, it...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
As one of the key topics in the development of neighborhood rough set, attribute reduction has attra...
Parallel attribute reduction is one of the most important topics in current research on rough set th...
In rough set theory, attribute reduction aims to retain the discernability of the original attribute...
The attribute reduction problem for rough set is analyzed by the mutual information of attribute set...
Neighborhood Rough Sets (NRS) has been proven to be an efficient tool for heterogeneous attribute re...
[[abstract]]For data mining or machine learning, the plethora of parameters that may affect the effi...
Attribute reduction with rough sets is an effective technique for obtaining a compact and informativ...
Due to the explosive growth of data collected by various sensors, it has become a difficult problem ...
Due to increase in large number of document on the internet data mining becomes an important key par...
In recent years, the theory of decision-theoretic rough set and its applications have been studied, ...
Attribute selection (Feature Selection) is a significant technique for data preprocessing and dimens...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...